Kurzfassung

Cities can be monitored using video cameras in order to extract traffic data. Besides the remote sensing data, stationary cameras fixed at high buildings can be used which provide data 24 hours a day, even when it is raining. Therefore, such data complement remot sensing data. The data can be used, e.g., to optimize traffic flow by controlling traffic lights dynamically. In case of stationary cameras, in order to minimize the number of cameras it is usefull to reidentify vehicles leaving one monitored region and afterwards entering the viewing field of a further camera. From reidentified vehicles travel times can be obtained which are relevant parameters to optimize traffic control. A method to reidentify vehicles based on extraction of 3-d-prototype vehicle models and color extraction from the top plane of vehicles is presented. Shadows and light reflections on wet street are corrected, and therefore, the high recognition accurary is achieved which is neccessary to find the top plane of the vehicles. The algorithms are suitable for real-time applications. The methods can also be used for remote sensing data. Reidentification of vehicles in remote sensing data is of interest, because vehicles can get lost for a while, e.g., when high buildings prevent a direct view onto parts of the street.

Dokumentart:

Konferenzbeitrag (Paper)

Zusätzliche Informationen:

LIDO-Berichtsjahr=2003

Titel:

Fast extraction of traffic data and reidentification of vehicles from video data

Autoren:

Autoren

Institution oder E-Mail-Adresse

Autoren-ORCID

Woesler, Richard

NICHT SPEZIFIZIERT

NICHT SPEZIFIZIERT

Datum:

2003

Erschienen in:

Proceedings of the IEEE 6th International Conference On Intelligent Transportation Systems